Grouting in underground rock caverns by data mining
Water seepage has always been a challenge to underground construction operations. Project delays and safety concerns are just some of the issues water seepage can bring about. Since groundwater tends to flow into newly excavated areas, this problem has become almost inevitable in any tunnelling p...
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Format: | Final Year Project |
Language: | English |
Published: |
2019
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Online Access: | http://hdl.handle.net/10356/77837 |
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Institution: | Nanyang Technological University |
Language: | English |
Summary: | Water seepage has always been a challenge to underground construction operations. Project delays
and safety concerns are just some of the issues water seepage can bring about. Since groundwater
tends to flow into newly excavated areas, this problem has become almost inevitable in any
tunnelling projects. Grouting, which is a procedure of injecting a mixture of water and cement
using pressure, is generally used to tackle water leakage. By plugging open spaces in the rock
masses, grouting can reduce hydraulic conductivity and prevent excessive amounts of water
seepage. However, establishing a suitable amount and pressure of grout, to ensure safe and
economical use, is complicated. The aim of the report is to discover new grouting insights and
potential relationships between grouting and other parameters using Artificial Neural Networks, a
technique in data mining. Data sets from tunnel OT 0-1C of the Jurong Rock Caverns in Singapore
are pre-processed and potential parameters are selected. These parameters undergo a preliminary
analysis, which involves a correlation analysis that sieves out redundant parameters. Remaining
parameters are fed into the neural networks to generate a predictive model. Subsequently, this
model is analysed and cross-validated with data from another tunnel, OT 1-2. It was discovered
that although the regression of the prediction model faired moderately well during the training and
testing phase, the model produced poor results for cross-validation. This indicates that the model
might not be accurate enough for general use and is only employable in the prediction of grouting
parameters in tunnel OT 0-1C. |
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